Classification of walking patterns in Parkinson's disease patients based on inertial sensor data

M. Djuric-Jovicic, N. Jovičić, I. Milovanovic, S. Radovanovic, N. Kresojević, M. Popovic
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引用次数: 35

Abstract

The gait disturbances in Parkinson's disease (PD) patients occur occasionally and intermittently, appearing in a random, inexplicable manner. These disturbances include festinations, shuffling, and complete freezing of gait (FOG). Alternation of walking pattern decreases the quality of life and may result in falls. In order to recognize disturbances during walking in PD patients, we recorded gait kinematics with wireless inertial measurement system and designed an algorithm for automatic recognition and classification of walking patterns. The algorithm combines a perceptron neural network with simple signal processing and rule-based classification. In parallel, gait was recorded with video camera. Medical experts identified FOG episodes from videos and their results were used for comparison and validation of this method. The summary result shows that the error in recognition and classification of walking patterns is up to 16%.
基于惯性传感器数据的帕金森病患者行走模式分类
帕金森氏症(PD)患者的步态障碍偶尔和间歇性地出现,以随机的、无法解释的方式出现。这些障碍包括兴奋、拖脚和步态完全冻结(FOG)。行走方式的改变会降低生活质量,并可能导致跌倒。为了识别PD患者行走过程中的干扰,我们使用无线惯性测量系统记录步态运动学,并设计了一种自动识别和分类行走模式的算法。该算法将感知器神经网络与简单的信号处理和基于规则的分类相结合。同时,用摄像机记录步态。医学专家从视频中确定了FOG发作,并将其结果用于比较和验证该方法。总结结果表明,该方法对行走模式的识别和分类误差高达16%。
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